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      Classifying Patents Based on their Semantic Content

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          Abstract

          In this paper, we extend some usual techniques of classification resulting from a large-scale data-mining and network approach. This new technology, which in particular is designed to be suitable to big data, is used to construct an open consolidated database from raw data on 4 million patents taken from the US patent office from 1976 onward. To build the pattern network, not only do we look at each patent title, but we also examine their full abstract and extract the relevant keywords accordingly. We refer to this classification as semantic approach in contrast with the more common technological approach which consists in taking the topology when considering US Patent office technological classes. Moreover, we document that both approaches have highly different topological measures and strong statistical evidence that they feature a different model. This suggests that our method is a useful tool to extract endogenous information.

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          Climbing atop the Shoulders of Giants: The Impact of Institutions on Cumulative Research

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            Invention as a Combinatorial Process: Evidence from U.S. Patents

            , , (2014)
            Invention has been commonly conceptualized as a search over a space of combinatorial possibilities. Despite the existence of a rich literature, spanning a variety of disciplines, elaborating on the recombinant nature of invention, we lack a formal and quantitative characterization of the combinatorial process underpinning inventive activity. Here we utilize U.S. patent records dating from 1790 to 2010 to formally characterize the invention as a combinatorial process. To do this we treat patented inventions as carriers of technologies and avail ourselves of the elaborate system of technology codes used by the U.S. Patent Office to classify the technologies responsible for an invention's novelty. We find that the combinatorial inventive process exhibits an invariant rate of "exploitation" (refinements of existing combinations of technologies) and "exploration" (the development of new technological combinations). This combinatorial dynamic contrasts sharply with the creation of new technological capabilities -- the building blocks to be combined -- which has significantly slowed down. We also find that notwithstanding the very reduced rate at which new technologies are introduced, the generation of novel technological combinations engenders a practically infinite space of technological configurations.
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              Detecting signals of new technological opportunities using semantic patent analysis and outlier detection

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                Author and article information

                Journal
                2016-12-27
                Article
                1612.08504
                f1d67778-6d0b-430f-9f04-8e3118993fb5

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                28 pages ; 9 figures ; 5 Supplementary Materials
                physics.soc-ph cs.CL

                General physics,Theoretical computer science
                General physics, Theoretical computer science

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